Personal Health, Philips Research, Royal Philips, Eindhoven, The Netherlands. Signal Processing Systems, Electrical Engineering, Eindhoven University of Technology, Eindhoven, The Netherlands.
Physiol Meas. 2019 Feb 26;40(2):025006. doi: 10.1088/1361-6579/ab030e.
Evaluate a method for the estimation of the nocturnal systolic blood pressure (SBP) dip from 24 h blood pressure trends using a wrist-worn photoplethysmography (PPG) sensor and a deep neural network in free-living individuals, comparing the deep neural network to traditional machine learning and non-machine learning baselines.
A wrist-worn PPG sensor was worn by 106 healthy individuals for 226 d during which 5111 reference values for blood pressure (BP) were obtained with a 24 h ambulatory BP monitor and matched with the PPG sensor data. Features based on heart rate variability and pulse morphology were extracted from the PPG waveforms. Long- and short term memory (LSTM) networks, dense networks, random forests and linear regression models were trained and evaluated in their capability of tracking trends in BP, as well as the estimation of the SBP dip.
Best performance for estimating the SBP dip were obtained with a deep LSTM neural network with a root mean squared error (RMSE) of 3.12 [Formula: see text] 2.20 [Formula: see text] mmHg and a correlation of 0.69 [Formula: see text]. This dip was derived from trend estimates of BP which had an RMSE of 8.22 [Formula: see text] 1.49 mmHg for systolic and 6.55 [Formula: see text] 1.39 mmHg for diastolic BP (DBP). While other models had similar performance for the tracking of relative BP, they did not perform as well as the LSTM for the SBP dip.
The work provides first evidence for the unobtrusive estimation of the nocturnal SBP dip, a highly prognostic clinical parameter. It is also the first to evaluate unobtrusive BP measurement in a large data set of unconstrained 24 h measurements in free-living individuals and provides evidence for the utility of LSTM models in this domain.
评估一种使用腕戴光电容积脉搏波(PPG)传感器和深度神经网络从 24 小时血压趋势估算夜间收缩压(SBP)下降的方法,在自由生活个体中,将深度神经网络与传统机器学习和非机器学习基线进行比较。
106 名健康个体佩戴腕戴 PPG 传感器 226 天,在此期间使用 24 小时动态血压监测仪获得 5111 个血压(BP)参考值,并与 PPG 传感器数据相匹配。从 PPG 波形中提取基于心率变异性和脉搏形态的特征。训练并评估长短期记忆(LSTM)网络、密集网络、随机森林和线性回归模型,以评估它们跟踪 BP 趋势以及估算 SBP 下降的能力。
深度 LSTM 神经网络估算 SBP 下降的性能最佳,均方根误差(RMSE)为 3.12 [Formula: see text] 2.20 [Formula: see text] mmHg,相关性为 0.69 [Formula: see text]。该下降是从 BP 趋势估计中得出的,收缩压的 RMSE 为 8.22 [Formula: see text] 1.49 mmHg,舒张压(DBP)为 6.55 [Formula: see text] 1.39 mmHg。虽然其他模型在相对 BP 的跟踪方面表现相似,但它们在 SBP 下降方面的表现不如 LSTM 模型。
该工作首次提供了一种非侵入性估计夜间 SBP 下降的方法的证据,这是一个高度预测性的临床参数。它也是首次在自由生活个体的非约束性 24 小时测量的大型数据集评估非侵入性 BP 测量,并为 LSTM 模型在该领域的实用性提供了证据。